在基于位置的社交网络中为外地用户提供位置推荐

Gregory Ference, Mao Ye, Wang-Chien Lee
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引用次数: 134

摘要

以往大多数关于基于位置的社交网络(LBSNs)位置推荐服务的研究都是在不考虑目标用户当前所在位置的情况下进行推荐的。即使用户出城旅行,这些服务也可能会推荐一个离她家乡近的地方。在本文中,我们通过考虑用户偏好、社会影响力和地理邻近性来研究外地用户的位置推荐问题。因此,我们提出了一个协作推荐框架,称为用户偏好、邻近度和基于社交的协同过滤(UPS-CF),为LBSNs中的移动用户进行位置推荐。我们通过使用从Foursquare和Gowalla收集的真实数据集进行综合实验来验证我们的想法。通过比较基线算法和传统协同过滤方法(及其变体),我们表明UPS-CF表现出最佳性能。此外,我们发现来自相似用户的偏好对城镇用户很重要,而社会影响对城镇外用户更重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Location recommendation for out-of-town users in location-based social networks
Most previous research on location recommendation services in location-based social networks (LBSNs) makes recommendations without considering where the targeted user is currently located. Such services may recommend a place near her hometown even if the user is traveling out of town. In this paper, we study the issues in making location recommendations for out-of-town users by taking into account user preference, social influence and geographical proximity. Accordingly, we propose a collaborative recommendation framework, called User Preference, Proximity and Social-Based Collaborative Filtering} (UPS-CF), to make location recommendation for mobile users in LBSNs. We validate our ideas by comprehensive experiments using real datasets collected from Foursquare and Gowalla. By comparing baseline algorithms and conventional collaborative filtering approach (and its variants), we show that UPS-CF exhibits the best performance. Additionally, we find that preference derived from similar users is important for in-town users while social influence becomes more important for out-of-town users.
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